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首页> 外文期刊>Pattern recognition and image analysis: advances in mathematical theory and applications in the USSR >Method of Weak Classifiers Fuzzy Boosting: Iterative Learning of Quasi-Linear Algorithmic Composition1,2
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Method of Weak Classifiers Fuzzy Boosting: Iterative Learning of Quasi-Linear Algorithmic Composition1,2

机译:弱分类器模糊提升的方法:拟线性算法合成的迭代学习1,2

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摘要

Method of fuzzy boosting providing iterative weak classifiers selection and their quasi-linear composition construction is presented. The method is based on the combination of boosting and fuzzy integrating techniques, when at each step of boosting weak classifiers are combined by Choquet fuzzy integral. In the proposed FuzzyBoost algorithm 2-additive fuzzy measures were used, and method for their estimation was proposed. Although detailed theoretical verification of proposed algorithm is still absent, the experimental results, made on simulated data models, demonstrate that in the case of complex decision boundaries FuzzyBoost significantly outperforms AdaBoost.
机译:提出了提供迭代弱分类器选择的模糊提升方法及其准线性组合构造。该方法基于升压和模糊积分技术的结合,当在升压的每个步骤中,弱分类器都通过Choquet模糊积分进行组合。在所提出的FuzzyBoost算法中,使用了2个加性模糊测度,并提出了其估计方法。尽管仍然缺少对所提出算法的详细理论验证,但是在模拟数据模型上进行的实验结果表明,在复杂决策边界的情况下,FuzzyBoost的性能明显优于AdaBoost。

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